Hydrogeochemical characterization and suitability assessment of groundwater in a typical coal mining subsidence area in China using self-organizing feature map

In the Taiping coal mining area in Zoucheng City, where there is a focus on agricultural production, a unique collapsed pond has been formed due to the dense population, a high phreatic water level and coal mining subsidence. A one-year field study was undertaken to investigate the concentrations of...

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Veröffentlicht in:Environmental earth sciences 2022-11, Vol.81 (21), Article 507
Hauptverfasser: Zhao, Di, Zeng, Yifan, Wu, Qiang, Mei, Aoshuang, Gao, Shuai, Du, Xin, Yang, Weihong
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Zeng, Yifan
Wu, Qiang
Mei, Aoshuang
Gao, Shuai
Du, Xin
Yang, Weihong
description In the Taiping coal mining area in Zoucheng City, where there is a focus on agricultural production, a unique collapsed pond has been formed due to the dense population, a high phreatic water level and coal mining subsidence. A one-year field study was undertaken to investigate the concentrations of cations and anions in the pore groundwater, as well as the collapsed water and surface water, to clarify the hydrogeochemical controls, the seasonal cycle characteristics and the intended uses for the groundwater. The results, obtained from a self-organizing feature map, the K-means clustering algorithm and the Durov diagrams, revealed that the hydrochemical dataset could be classified into five clusters, corresponding to a SO 4 -Na type (Clusters 1 and 2), a mixed type (Cluster 3), a HCO 3 -Ca type (Cluster 4) and a SO 4 -Na∙Ca type (Cluster 5), respectively, with clear seasonal changes in the five pore groundwater samples. Based on the Gibbs, Gaillardet and chloro-alkaline index (CAI) diagrams, rock weathering, cation exchange and evaporative crystallization, especially the erosion of silicate rock, were the primary processes controlling the hydrogeochemistry. Meanwhile, the suitability of the groundwater evaluation methods of random forest (RF), genetic algorithm-support vector machine (GA-SVM) and back-propagation (BP) neural network were found to be superior to the traditional Quality Standard for Groundwater of China (SGQC), the Fisher and the F analysis methods. Among them RF has the optimal simulation accuracy and effect. As a result of quality assessment of the groundwater, the quality of the shallow groundwater was generally poor and was only fit for purpose after appropriate treatment. Moreover, it is speculated that the main factors affecting the groundwater quality were the unique mode of collapse of the pond formed as a result of the high phreatic water level, the natural conditions such as rainwater recharge and groundwater runoff, the dense population, mining and agricultural development, and chemical pollution. This innovative study describes an optimization method for assessment of groundwater suitability and highlights the importance of minimizing excessive groundwater extraction, developing continuous water quality monitoring plans, and managing and preventing potential hazards.
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Meanwhile, the suitability of the groundwater evaluation methods of random forest (RF), genetic algorithm-support vector machine (GA-SVM) and back-propagation (BP) neural network were found to be superior to the traditional Quality Standard for Groundwater of China (SGQC), the Fisher and the F analysis methods. Among them RF has the optimal simulation accuracy and effect. As a result of quality assessment of the groundwater, the quality of the shallow groundwater was generally poor and was only fit for purpose after appropriate treatment. Moreover, it is speculated that the main factors affecting the groundwater quality were the unique mode of collapse of the pond formed as a result of the high phreatic water level, the natural conditions such as rainwater recharge and groundwater runoff, the dense population, mining and agricultural development, and chemical pollution. 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A one-year field study was undertaken to investigate the concentrations of cations and anions in the pore groundwater, as well as the collapsed water and surface water, to clarify the hydrogeochemical controls, the seasonal cycle characteristics and the intended uses for the groundwater. The results, obtained from a self-organizing feature map, the K-means clustering algorithm and the Durov diagrams, revealed that the hydrochemical dataset could be classified into five clusters, corresponding to a SO 4 -Na type (Clusters 1 and 2), a mixed type (Cluster 3), a HCO 3 -Ca type (Cluster 4) and a SO 4 -Na∙Ca type (Cluster 5), respectively, with clear seasonal changes in the five pore groundwater samples. Based on the Gibbs, Gaillardet and chloro-alkaline index (CAI) diagrams, rock weathering, cation exchange and evaporative crystallization, especially the erosion of silicate rock, were the primary processes controlling the hydrogeochemistry. Meanwhile, the suitability of the groundwater evaluation methods of random forest (RF), genetic algorithm-support vector machine (GA-SVM) and back-propagation (BP) neural network were found to be superior to the traditional Quality Standard for Groundwater of China (SGQC), the Fisher and the F analysis methods. Among them RF has the optimal simulation accuracy and effect. As a result of quality assessment of the groundwater, the quality of the shallow groundwater was generally poor and was only fit for purpose after appropriate treatment. Moreover, it is speculated that the main factors affecting the groundwater quality were the unique mode of collapse of the pond formed as a result of the high phreatic water level, the natural conditions such as rainwater recharge and groundwater runoff, the dense population, mining and agricultural development, and chemical pollution. This innovative study describes an optimization method for assessment of groundwater suitability and highlights the importance of minimizing excessive groundwater extraction, developing continuous water quality monitoring plans, and managing and preventing potential hazards.</abstract><cop>Berlin/Heidelberg</cop><pub>Springer Berlin Heidelberg</pub><doi>10.1007/s12665-022-10596-2</doi></addata></record>
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subjects Agricultural development
Agricultural production
Algorithms
Anions
Back propagation networks
Biogeosciences
Cation exchange
Cation exchanging
Cations
Chemical contamination
Chemical pollution
Cluster analysis
Clustering
Coal
Coal mining
Crystallization
Earth and Environmental Science
Earth Sciences
Environmental Science and Engineering
Feature maps
Genetic algorithms
Geochemistry
Geological processes
Geology
Groundwater
Groundwater quality
Groundwater recharge
Groundwater runoff
Groundwater treatment
Hydrochemicals
Hydrogeochemistry
Hydrology/Water Resources
Methods
Neural networks
Optimization
Original Article
Pollution monitoring
Ponds
Quality assessment
Quality control
Quality standards
Rain
Rain water
Rocks
Seasonal variation
Seasonal variations
Self organizing maps
Silicates
Sodium
Subsidence
Sulphates
Support vector machines
Surface water
Terrestrial Pollution
Vector quantization
Water analysis
Water levels
Water monitoring
Water quality
Water quality management
Water quality monitoring
Water sampling
Weathering
title Hydrogeochemical characterization and suitability assessment of groundwater in a typical coal mining subsidence area in China using self-organizing feature map
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